颞下颌疾病预测模型的研究进展

Q4 Medicine
Y R Zhang, Y N Zhou, J Y Huang, W Fang
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引用次数: 0

摘要

颞下颌紊乱(Temporomandibular disorder, TMD)是口腔颌面外科手术中的常见疾病,严重影响患者的生活质量。因此,TMD的早期预测和适当治疗至关重要。TMD预测模型的研究经历了从传统统计方法到机器学习再到深度学习的演变,每个阶段都有不同的贡献和局限性。传统的统计方法可以准确地识别影响治疗效果的独立危险因素,但通常依赖于大量的先验知识和假设。机器学习技术能够处理大规模、高维的数据,并在数据集中自主学习模式和规律;然而,它们对数据质量有很强的依赖性,模型泛化能力有限。深度学习方法擅长于从时间序列数据中自动提取时间模式和趋势,同时有效地捕获复杂的非线性关系,但它们需要大量的训练数据集,并且由于其固有的黑盒测试而遭受可解释性挑战。本文综述了这些方法在TMD研究中的应用和成果,分析了各自的优势和制约因素,并探讨了该领域未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Advances in prediction models for temporomandibular disorders].

Temporomandibular disorders (TMD), a common condition in oral and maxillofacial surgery, significantly impairs patients' quality of life. Early prediction and appropriate treatment of TMD are therefore critically important. Research on TMD prediction models has evolved from traditional statistical methods to machine learning and subsequently to deep learning, each offering unique advantages and limitations. Traditional statistical methods can effectively identify independent risk factors influencing treatment outcomes but generally rely on substantial prior knowledge and assumptions. Machine learning techniques can process large-scale, high-dimensional data and autonomously learning patterns and regularities within datasets. However, they exhibit strong dependence on data quality and limited model generalization capabilities. Deep learning approaches excel at automatically extracting temporal patterns and trends from time-series data while effectively capturing complex nonlinear relationships, yet they require extensive training datasets and suffer from interpretability challenges due to their inherent black-box testing. This review comprehensively evaluates the implementation and performance of these computational approaches in TMD prediction, critically analyzes their respective strengths and constraints, and discusses promising future research directions.

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来源期刊
中华口腔医学杂志
中华口腔医学杂志 Medicine-Medicine (all)
CiteScore
0.90
自引率
0.00%
发文量
9692
期刊介绍: Founded in August 1953, Chinese Journal of Stomatology is a monthly academic journal of stomatology published publicly at home and abroad, sponsored by the Chinese Medical Association and co-sponsored by the Chinese Stomatology Association. It mainly reports the leading scientific research results and clinical diagnosis and treatment experience in the field of oral medicine, as well as the basic theoretical research that has a guiding role in oral clinical practice and is closely combined with oral clinical practice. Chinese Journal of Over the years, Stomatology has been published in Medline, Scopus database, Toxicology Abstracts Database, Chemical Abstracts Database, American Cancer database, Russian Abstracts database, China Core Journal of Science and Technology, Peking University Core Journal, CSCD and other more than 20 important journals at home and abroad Physical medicine database and retrieval system included.
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